Paper Reading AI Learner

A Brief Overview of AI Governance for Responsible Machine Learning Systems

2022-11-21 23:48:51
Navdeep Gill, Abhishek Mathur, Marcos V. Conde
     

Abstract

Organizations of all sizes, across all industries and domains are leveraging artificial intelligence (AI) technologies to solve some of their biggest challenges around operations, customer experience, and much more. However, due to the probabilistic nature of AI, the risks associated with it are far greater than traditional technologies. Research has shown that these risks can range anywhere from regulatory, compliance, reputational, and user trust, to financial and even societal risks. Depending on the nature and size of the organization, AI technologies can pose a significant risk, if not used in a responsible way. This position paper seeks to present a brief introduction to AI governance, which is a framework designed to oversee the responsible use of AI with the goal of preventing and mitigating risks. Having such a framework will not only manage risks but also gain maximum value out of AI projects and develop consistency for organization-wide adoption of AI.

Abstract (translated)

URL

https://arxiv.org/abs/2211.13130

PDF

https://arxiv.org/pdf/2211.13130.pdf


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